Radiation pattern prediction for Metasurfaces: A Neural Network based approach
Hamidreza Taghvaee, Akshay Jain, Xavier Timoneda, Christos Liaskos,, Sergi Abadal, Eduard Alarc\'on, Albert Cabellos-Aparicio

TL;DR
This paper introduces a neural network approach to rapidly and accurately predict the radiation patterns of reconfigurable metasurfaces, facilitating their deployment in future 6G wireless networks.
Contribution
It presents a novel neural network-based method that achieves high accuracy and low computational cost in modeling metasurface radiation patterns, outperforming traditional models.
Findings
Achieves 98.8%-99.8% accuracy compared to full wave simulations.
Reduces computational complexity to that of analytical models.
Demonstrates effectiveness across multiple scenarios.
Abstract
As the current standardization for the 5G networks nears completion, work towards understanding the potential technologies for the 6G wireless networks is already underway. One of these potential technologies for the 6G networks are Reconfigurable Intelligent Surfaces (RISs). They offer unprecedented degrees of freedom towards engineering the wireless channel, i.e., the ability to modify the characteristics of the channel whenever and however required. Nevertheless, such properties demand that the response of the associated metasurface (MSF) is well understood under all possible operational conditions. While an understanding of the radiation pattern characteristics can be obtained through either analytical models or full wave simulations, they suffer from inaccuracy under certain conditions and extremely high computational complexity, respectively. Hence, in this paper we propose a…
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